Artificial intelligence models for predicting unconfined compressive strength of mixed soil types: focusing on clay and sand

被引:0
|
作者
Barada Prasad Sethy [1 ]
Umashankar Prajapati [2 ]
Neelashetty K [3 ]
Debendra Maharana [4 ]
Nageswara Rao Lakkimsetty [5 ]
Sudhanshu Maurya [6 ]
机构
[1] NIST University,Department of Civil Engineering
[2] Raj Kumar Goel Institute of Technology,Department of Civil Engineering
[3] Guru Nanak Dev Engineering College,EEE Department
[4] Centurion University of Technology and Management,Department of CSE
[5] American University of Ras Al Khaimah (AURAK),Department of Chemical and Petroleum Engineering, School of Engineering & Computing
[6] Symbiosis International (Deemed University),Symbiosis Institute of Technology, Nagpur Campus
关键词
Unconfined compressive strength (UCS); Artificial intelligence (AI); Random forest regression (RFR); Mixed soil types;
D O I
10.1007/s42107-025-01285-z
中图分类号
学科分类号
摘要
Unconfined Compressive Strength (UCS) is a critical parameter in geotechnical engineering, influencing soil stability, foundation design, and load-bearing capacity. Traditional UCS prediction methods, such as Multiple Linear Regression (MLR), often struggle to capture the non-linear relationships inherent in mixed soil compositions. This study evaluates the effectiveness of Artificial Intelligence (AI)-based models, including Artificial Neural Networks (ANN), Support Vector Regression (SVR), and Random Forest Regression (RFR), in predicting UCS for clay-dominant and sand-dominant soils. A dataset of 100 soil samples from six geographically diverse regions across India was analyzed, incorporating key soil parameters such as clay content, sand content, liquid limit, plasticity index, and curing period. The models were assessed using R2, Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Prediction Interval (PI), and Index of Agreement (IOA). Among the AI models, RFR outperformed others with an R2 of 0.93 (training) and 0.84 (testing), a20 accuracy of 95%, and minimal error rates, demonstrating its superiority in UCS prediction. Sensitivity analysis identified clay content (28.7%) and curing period (22.1%) as the most influential factors affecting UCS, reinforcing their geotechnical significance. Regularization techniques such as dropout, batch normalization, and early stopping were implemented to prevent overfitting in ANN, ensuring model generalizability. To enhance interpretability, feature importance analysis and correlation analysis were conducted, allowing insights into how soil parameters influence UCS. The study also discusses potential advancements, including hybrid AI-geotechnical models, ensemble learning approaches, Bayesian optimization for hyperparameter tuning, and expansion of datasets with global soil data. The findings highlight the potential of AI-driven techniques as robust, scalable alternatives to traditional UCS prediction methods, with implications for soil classification, stability assessment, and foundation engineering.
引用
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页码:1955 / 1972
页数:17
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